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Minh S. Dao, Truc-Vien Nguyen, Giulia
Boato, Francesco G.B. De Natale
                      University of Trento, Italy


                      @MediaEval 2012-SED task
Watershed transform                              Social Event Detection

                                           Idea:
                                           - People tend to introduce similar
                                              annotations for all images associated to
                                              the same event -> homogeneous
                                              regions
                                           - People cannot be involved in more than
                                              one event at the same time -> borders
                                              among events, stop condition
http://cmm.ensmp.fr/~beucher/wtshed.html

    Target:                                    Target:
    - Markers and all pixels sharing the       - Events and all images associated
       same characteristic (segmented             with these events
       homogeneous regions)

  Need: Image that needs to be segmented, Markers, Flood progress (stop-condition)
time (col)
           ...                                     ...
username = «procsilas»
dateTaken = «2009-01-17»
                                        username = «procsilas»
                                        dateTaken = «2009-01-17»     ...
           ...                                     ...


           ...                                     ...                                          ...
username = «sarahamina»                 username = «sarahamina»                      username = «sarahamina»
dateTaken = «2009-01-13»                dateTaken = «2009-01-13»     ...             dateTaken = «2009-01-12»
           ...                                     ...                                          ...


           ...                                     ...
username = «Xaf»
dateTaken = «2009-01-10»
                                        username = «Xaf»
                                        dateTaken = «2009-01-10»
                                                                      ...
           ...                                     ...



            .                                       .                          .                   .
            .                                       .                          .                   .
                           users(row)




            .                                       .                          .                   .
           ...                                      ...                        ...
username = «sarahamina»                 username = ...             username = ...
dateTaken = «2009-01-12»                dateTaken = ...            dateTaken = ...
           ...                                      ...                        ...
photo_url




            username
           dateTaken
              title
           description
               tags
            locations



UT image
Watershed transform




Hint 1: left- and right- neighbor pixels:   http://cmm.ensmp.fr/~beucher/wtshed.html
can be flooded from markers
                                                  Hint 2: one segment of one
Why?
                                                  user can be merged to another
- People tend to introduce similar
                                                  segment of another user as
  annotations for all images associated
                                                  long as they share the same
  to the same event.
                                                  MARKERs
- People cannot be involved in more
  than one event at the same time
www.oxforddicti
  onaries.com
www.macmillan                                             Tf-idf (keywords
 dictionary.com                                              + semantic
                                                            relatedness)
                                                          Tf-idf (locations
                                                           + geodistance)
     - Synonym
     - Semantic                   (keywords,
      relatedness                  locations)
    - Fixed terms


                                 Geodistance

    www.froscon.de
     www.cebit.de
     -----------------
www.allconferences.com                  Wiki
index.conferencesite.eu   – list of cities of a country
www.tradeshowalert.com     - List of public place of a
     -----------------                  city
     www.ieee.org         http://www.infoplease.co
     www.acm.org             m/ipa/A0001769.html
                                 (cities and GPS)
Step 1: (time direction)
           - left- and right- neighbor
             pixels: be flooded from
             markers with mergin-
             condition(time, tags, [locatio
             n])
           - Markers also can be merged if
             they satisfy merging-
             condition


           Step 2: (user direction)
           - Each chunk of each marker of
             one user will be merged with
UT image     other chunks of another users
Discussion
- Fixed terms (i.e. technical events that for sure are
  organized only in Germany, for example CeBIT, FrosCon)
  can improve Precision
- Semantic Relatedness could help to get rid of or
  decrease influences of «irrelevant» or «low sematic
  relatedness relevant»
- Merging-condition should be improved to increase Recall
- Geodistance sphere should be defined for each
  city/public places
- Roles of external data sources are important to prune
  (keywords, location) markers.
- Only English (semantic relatedness, keywords, cities
  names)
- Visual information
- Individual Geodistance sphere
- Merging-condition w.r.t features’
  influences
- Various threshold for tf-idf
- More languages (now only
  English)
The Watershed-based Social Events Detection Method with Support from External Data Sources

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The Watershed-based Social Events Detection Method with Support from External Data Sources

  • 1. Minh S. Dao, Truc-Vien Nguyen, Giulia Boato, Francesco G.B. De Natale University of Trento, Italy @MediaEval 2012-SED task
  • 2. Watershed transform Social Event Detection Idea: - People tend to introduce similar annotations for all images associated to the same event -> homogeneous regions - People cannot be involved in more than one event at the same time -> borders among events, stop condition http://cmm.ensmp.fr/~beucher/wtshed.html Target: Target: - Markers and all pixels sharing the - Events and all images associated same characteristic (segmented with these events homogeneous regions) Need: Image that needs to be segmented, Markers, Flood progress (stop-condition)
  • 3. time (col) ... ... username = «procsilas» dateTaken = «2009-01-17» username = «procsilas» dateTaken = «2009-01-17» ... ... ... ... ... ... username = «sarahamina» username = «sarahamina» username = «sarahamina» dateTaken = «2009-01-13» dateTaken = «2009-01-13» ... dateTaken = «2009-01-12» ... ... ... ... ... username = «Xaf» dateTaken = «2009-01-10» username = «Xaf» dateTaken = «2009-01-10» ... ... ... . . . . . . . . users(row) . . . . ... ... ... username = «sarahamina» username = ... username = ... dateTaken = «2009-01-12» dateTaken = ... dateTaken = ... ... ... ...
  • 4. photo_url username dateTaken title description tags locations UT image
  • 5. Watershed transform Hint 1: left- and right- neighbor pixels: http://cmm.ensmp.fr/~beucher/wtshed.html can be flooded from markers Hint 2: one segment of one Why? user can be merged to another - People tend to introduce similar segment of another user as annotations for all images associated long as they share the same to the same event. MARKERs - People cannot be involved in more than one event at the same time
  • 6. www.oxforddicti onaries.com www.macmillan Tf-idf (keywords dictionary.com + semantic relatedness) Tf-idf (locations + geodistance) - Synonym - Semantic (keywords, relatedness locations) - Fixed terms Geodistance www.froscon.de www.cebit.de ----------------- www.allconferences.com Wiki index.conferencesite.eu – list of cities of a country www.tradeshowalert.com - List of public place of a ----------------- city www.ieee.org http://www.infoplease.co www.acm.org m/ipa/A0001769.html (cities and GPS)
  • 7. Step 1: (time direction) - left- and right- neighbor pixels: be flooded from markers with mergin- condition(time, tags, [locatio n]) - Markers also can be merged if they satisfy merging- condition Step 2: (user direction) - Each chunk of each marker of one user will be merged with UT image other chunks of another users
  • 8. Discussion - Fixed terms (i.e. technical events that for sure are organized only in Germany, for example CeBIT, FrosCon) can improve Precision - Semantic Relatedness could help to get rid of or decrease influences of «irrelevant» or «low sematic relatedness relevant» - Merging-condition should be improved to increase Recall - Geodistance sphere should be defined for each city/public places - Roles of external data sources are important to prune (keywords, location) markers. - Only English (semantic relatedness, keywords, cities names)
  • 9. - Visual information - Individual Geodistance sphere - Merging-condition w.r.t features’ influences - Various threshold for tf-idf - More languages (now only English)